8

I'm trying to type this formula into R:

enter image description here

The formula takes the following inputs:

  • M: annual number of deaths (all-cause mortality);
  • D: annual number of cancer deaths (cancer mortality);
  • R: annual number of registered cancer cases;
  • N: size of the mid-year population.
  • w: Width of each age-interval, eg. [0-5) is 5 years wide, and the final interval is 85+ year, and thus infinitely wide.

All the above input vectors 18 elements long, because they refer to 18 age-intervals. The first 17 age-intervals are 5 years wide, and the last interval (85+ years) is infinitely wide.

The formula estimates lifetime risk of cancer as proposed by Sasieni et al 2011 http://www.nature.com/bjc/journal/v105/n3/full/bjc2011250a.html

It is the enter image description here that I don't know how to type.

Below I have tried to implement the parts of the equation before and after the enter image description here.

# Input data:
M <-   c(140L, 12L, 12L, 59L, 94L, 101L, 117L, 213L, 368L, 607L, 1025L, 
1488L, 2255L, 2787L, 3257L, 3715L, 4231L, 6281L) 


R <-  c(42L, 22L, 28L, 54L, 77L, 108L, 169L, 227L, 293L, 531L, 863L, 
1464L, 2591L, 3334L, 3045L, 2605L, 1890L, 1261L) 


D <-  c(2L, 1L, 2L, 6L, 4L, 7L, 15L, 26L, 67L, 120L, 304L, 497L, 883L, 
1158L, 1321L, 1318L, 1177L, 1065L) 


N <- c(167323L, 168088L, 176017L, 180986L, 168189L, 155506L, 174274L, 
195538L, 207287L, 204711L, 183802L, 174342L, 183415L, 151277L, 
104199L, 71782L, 47503L, 33946L) 

# W width of age interval
w <-  c( 5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,Inf )  


# function 
v1 <- numeric()           

for(i in 1:length(R))  {

v1[i] <- R[i] /  ( R[i] + M[i] - D[i] )  *  ( 1 - exp( - (w[i]/N[i]) *  (R[i] + M[i] - D[i]) ) )

}           


sum(v1)

Answers where the code looks as much as possible like the equation are preferred, so that coworkers with no knowledge of R can recognize the equation in the code.

The answer is supposed to be 0.376127241057822

  • Can you pinpoint the problem? – Roman Luštrik Apr 14 '16 at 9:11
  • Do you know that the result should be? – Richard Telford Apr 16 '16 at 17:22
  • No i don't know what the result should be unfortunately. – Rasmus Larsen Apr 16 '16 at 17:23
  • 2
    so when i=1, S_0 is the summation from j=1 to i=1-1? or is this defined to be 1? or more likely I don't understand math – rawr Apr 16 '16 at 20:58
  • @rawr This is defined to be zero. I just asked at math.stackexchange.com/a/1743772/92875 – Rasmus Larsen Apr 17 '16 at 10:59
12
+125

Maybe this will work. Isn't there an example in the paper that you can check?

f <- function(idx) {
  s <- numeric(idx)
  for (i in 1:idx)
    s[i] <- R[i] / (R[i] + M[i] - D[i]) * S(i) * (1 - exp(-w[i] / N[i] * (R[i] + M[i] - D[i])))
  s
}

S <- function(idx) {
  if (idx == 1L)
    return(1)
  s <- numeric(idx - 1)
  for (j in 1:(idx - 1))
    s[j] <- (R[j] + (M[j] - D[j])) / N[j]
  exp(-sum(s))
}

# Input data:
M <-   c(140L, 12L, 12L, 59L, 94L, 101L, 117L, 213L, 368L, 607L, 1025L, 
         1488L, 2255L, 2787L, 3257L, 3715L, 4231L, 6281L) 
R <-  c(42L, 22L, 28L, 54L, 77L, 108L, 169L, 227L, 293L, 531L, 863L, 
        1464L, 2591L, 3334L, 3045L, 2605L, 1890L, 1261L) 
D <-  c(2L, 1L, 2L, 6L, 4L, 7L, 15L, 26L, 67L, 120L, 304L, 497L, 883L, 
        1158L, 1321L, 1318L, 1177L, 1065L) 
N <- c(167323L, 168088L, 176017L, 180986L, 168189L, 155506L, 174274L, 
       195538L, 207287L, 204711L, 183802L, 174342L, 183415L, 151277L, 
       104199L, 71782L, 47503L, 33946L) 
# W width of age interval
w <-  c( 5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,Inf )  

f(18)
#  [1] 0.0012516883 0.0006533947 0.0007939380 0.0014874104 0.0022786758 0.0034506651
#  [7] 0.0048088199 0.0057397672 0.0069608906 0.0126706127 0.0226156951 0.0395612334
# [13] 0.0644167605 0.0956951717 0.1184236481 0.1330917708 0.1256574840 0.1421444626

sum(f(18))
# [1] 0.7817021

A more "R" way would be

lr <- length(R)
S <- sapply(seq(R), function(idx)
  exp(-sum((R[-(idx:lr)] + (M[-(idx:lr)] - D[-(idx:lr)])) / N[-(idx:lr)])))
sum(R / (R + M - D) * S * (1 - exp(-w / N * (R + M - D))))
# [1] 0.7817021
  • Does this answer take into account that s should be zero when the idx =1? (and therefore that exp -sum(s)) =1 | idx = 1.) as I believe it should.... – Rasmus Larsen Apr 18 '16 at 15:14
  • using negative indices in sapply to get a nested sum is a nifty trick! – jaimedash Apr 19 '16 at 21:34
3

Maybe I'm reading the problem incorrectly, but could you solve this by manually shifting the S*0(ai) vector by 1 to account for the summation from j=1 to i-1 and combining with cumsum?

#df is a data.frame of the example data.  Jump to bottom for code.

#index i = row i
#Using mutate() from dplyr library to make code easier to read
df <- dplyr::mutate(df, RMDN.i = R/(R+M-D) * ( 1 - exp( -(w/N) * (R+M-D) ) ))

#Shift values down one because equation sums from j=1 to i-1.
df$RMDN.i_1 <- c(0, head(df$RMDN.i, -1)) 
df$S0.ai <-exp(-cumsum(df$RMDN.i_1))     #Cumulative sum

#Again, cumulative sum to calculate lifetime risk (Eq. 7)
df <- dplyr::mutate(df, risk = cumsum( R/(R+M-D) * S0.ai * (1 - exp(-(w/N) * (R+M-D)) ) )) 

df
#   age    M    R    D      N   w       RMDN.i     RMDN.i_1     S0.ai        risk
#1    0  140   42    2 167323   5 0.0012516883 0.0000000000 1.0000000 0.001251688
#2    5   12   22    1 168088   5 0.0006540980 0.0012516883 0.9987491 0.001904968
#3   10   12   28    2 176017   5 0.0007949486 0.0006540980 0.9980960 0.002698403
#4   15   59   54    6 180986   5 0.0014896253 0.0007949486 0.9973029 0.004184011
#5   20   94   77    4 168189   5 0.0022834186 0.0014896253 0.9958184 0.006457881
#6   25  101  108    7 155506   5 0.0034612823 0.0022834186 0.9935471 0.009896828
#7   30  117  169   15 174274   5 0.0048298858 0.0034612823 0.9901141 0.014678966
#8   35  213  227   26 195538   5 0.0057738828 0.0048298858 0.9853435 0.020368224
#9   40  368  293   67 207287   5 0.0070171053 0.0057738828 0.9796707 0.027242676
#10  45  607  531  120 204711   5 0.0128095925 0.0070171053 0.9728203 0.039704108
#11  50 1025  863  304 183802   5 0.0229777407 0.0128095925 0.9604383 0.061772810
#12  55 1488 1464  497 174342   5 0.0405424457 0.0229777407 0.9386212 0.099826810
#13  60 2255 2591  883 183415   5 0.0669506082 0.0405424457 0.9013283 0.160171288
#14  65 2787 3334 1158 151277   5 0.1016317397 0.0669506082 0.8429595 0.245842732
#15  70 3257 3045 1321 104199   5 0.1299648254 0.1016317397 0.7614977 0.344810654
#16  75 3715 2605 1318  71782   5 0.1532142188 0.1299648254 0.6686912 0.447263656
#17  80 4231 1890 1177  47503   5 0.1550955224 0.1532142188 0.5737009 0.536242096
#18  85 6281 1261 1065  33946 Inf 0.1946888992 0.1550955224 0.4912792 0.631888708

library(ggplot2)
ggplot(df, aes(x= age, y= risk)) + geom_line() + geom_point() + theme_classic()

risk_vs_age

# Input data:
df <- data.frame(
        age = seq(0,85, by = 5),  #age band
        M =   c(140L, 12L, 12L, 59L, 94L, 101L, 117L, 213L, 368L, 607L, 1025L, 
                 1488L, 2255L, 2787L, 3257L, 3715L, 4231L, 6281L),
        R =  c(42L, 22L, 28L, 54L, 77L, 108L, 169L, 227L, 293L, 531L, 863L, 
                1464L, 2591L, 3334L, 3045L, 2605L, 1890L, 1261L), 
        D =  c(2L, 1L, 2L, 6L, 4L, 7L, 15L, 26L, 67L, 120L, 304L, 497L, 883L, 
                1158L, 1321L, 1318L, 1177L, 1065L),
        N = c(167323L, 168088L, 176017L, 180986L, 168189L, 155506L, 174274L, 
               195538L, 207287L, 204711L, 183802L, 174342L, 183415L, 151277L, 
               104199L, 71782L, 47503L, 33946L) ,
        w =  c( 5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,5,Inf ) # W width of age interval 
      )

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.